Abstract

Mobile learning (M-learning) has gained tremendous attention in the educational environment in the past decade. For effective M-learning, it is important to create an efficient M-learning model that can identify the exact requirements of mobile learners (M-learners). M-learning model is composed of features that are generated during M-learners' interaction with mobile devices. For an adaptive M-learning model, not only learning features are required, but it is also important to determine how they differ for various M-learners, their weights, and interrelationship. This study proposes a robust and adaptive M-learning model that is based on machine learning and deep learning (ML/DL) techniques. The proposed M-learning model dynamically explores learning features, their corresponding weights, and association for M-learners. Based on learning features, the M-learning model categorizes M-learners into different performance groups. The M-learning model then provides adaptive content, suggestions, and recommendations to M-learners in order to make learning adaptive and stimulating. For comparative analysis, the prediction accuracy of five baseline ML models was compared with the deep Artificial Neural Network (deep ANN). The results demonstrated that deep ANN and Random Forest (RF) models exhibited better prediction accuracy. Subsequently, both models were selected for developing the M-learning model which included the performance categorization of M-learners under a five-level classification scheme and assigning weights to various features for providing adaptive help and support to M-learners. Our explanatory analysis has shown that behavioral features besides contextual features also influence the learning performance of M-learners. As a direct outcome of this research, more efficient, interactive, and useful mobile learning applications can be developed that accurately predict learning objectives and requirements of diverse M-learners thus helping M-learners in enhancing their study behavior.

Highlights

  • Mobile devices have become an integral part of life and society

  • DL algorithms such as deep Artificial Neural Networks with several hidden layers are capable of determining significant features along with their weights i.e. importance in classifying learners in different categories

  • The samples of the class selected are labeled as positive samples whereas other class samples are labeled as negatives

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Summary

Introduction

Mobile devices have become an integral part of life and society. A current-day challenge is to make Mobile learning (M-learning) adaptive for those who use mobile devices for learning purposes. The aim was to predict M-learners’ attainments and identifying important features that affect the learning performance of M-learners. They interpreted features generated from learners’ interaction with online learning systems as time-series problems, processed learners’ features weekwise, to analyze their study behavior and predict at-risk learners.

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